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Rettenberger, Luca; Szymanski, Nathan J.; Giunto, Andrea; Dartsi, Olympia; Jain, Anubhav; Ceder, Gerbrand; Hagenmeyer, Veit; Reischl, Markus (2025) Leveraging unlabeled SEM datasets with self-supervised learning for enhanced particle segmentation. npj Computational Materials, 11 (1). doi:10.1038/s41524-025-01802-3

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Reference TypeJournal (article/letter/editorial)
TitleLeveraging unlabeled SEM datasets with self-supervised learning for enhanced particle segmentation
Journalnpj Computational Materials
AuthorsRettenberger, LucaAuthor
Szymanski, Nathan J.Author
Giunto, AndreaAuthor
Dartsi, OlympiaAuthor
Jain, AnubhavAuthor
Ceder, GerbrandAuthor
Hagenmeyer, VeitAuthor
Reischl, MarkusAuthor
Year2025 (September 22)Volume11
Issue1
PublisherSpringer Science and Business Media LLC
DOIdoi:10.1038/s41524-025-01802-3Search in ResearchGate
Generate Citation Formats
Mindat Ref. ID18971015Long-form Identifiermindat:1:5:18971015:2
GUID0
Full ReferenceRettenberger, Luca; Szymanski, Nathan J.; Giunto, Andrea; Dartsi, Olympia; Jain, Anubhav; Ceder, Gerbrand; Hagenmeyer, Veit; Reischl, Markus (2025) Leveraging unlabeled SEM datasets with self-supervised learning for enhanced particle segmentation. npj Computational Materials, 11 (1). doi:10.1038/s41524-025-01802-3
Plain TextRettenberger, Luca; Szymanski, Nathan J.; Giunto, Andrea; Dartsi, Olympia; Jain, Anubhav; Ceder, Gerbrand; Hagenmeyer, Veit; Reischl, Markus (2025) Leveraging unlabeled SEM datasets with self-supervised learning for enhanced particle segmentation. npj Computational Materials, 11 (1). doi:10.1038/s41524-025-01802-3
In(2025, January) npj Computational Materials Vol. 11 (1). Springer Science and Business Media LLC

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